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First published online June 23, 2006; 10.1104/pp.106.082396 Plant Physiology 141:1630-1643 (2006) © 2006 American Society of Plant Biologists Natural Variation for Carbohydrate Content in Arabidopsis. Interaction with Complex Traits Dissected by Quantitative Genetics1Unité de Nutrition Azotée des Plantes (F.C., V.S.-C., S.M., F.D.-V., A.K.) and Station de Génétique et d'Amélioration des Plantes (O.L.), Institut National de la Recherche Agronomique, Centre de Versailles, 78026 Versailles, France
Besides being a metabolic fuel, carbohydrates play important roles in plant growth and development, in stress responses, and as signal molecules. We exploited natural variation in Arabidopsis (Arabidopsis thaliana) to decipher the genetic architecture determining carbohydrate content. A quantitative trait locus (QTL) approach in the Bay-0 x Shahdara progeny grown in two contrasting nitrogen environments led to the identification of 39 QTLs for starch, glucose, fructose, and sucrose contents representing at least 14 distinct polymorphic loci. A major QTL for fructose content (FR3.4) and a QTL for starch content (ST3.4) were confirmed in heterogeneous inbred families. Several genes associated with carbon (C) metabolism colocalize with the identified QTL. QTLs for senescence-related traits, and for flowering time, water status, and nitrogen-related traits, previously detected with the same genetic material, colocalize with C-related QTLs. These colocalizations reflect the complex interactions of C metabolism with other physiological processes. QTL fine-mapping and cloning could thus lead soon to the identification of genes potentially involved in the control of different connected physiological processes.
Sugars and starch are important plant products used for human diet and as raw material in industry (Roeper, 2002
During photosynthesis, CO2 is fixed in the chloroplast into triose-phosphates, which are mainly used to regenerate ribulose-1,5- bisphosphate. Only the surplus is exported in the cytosol in counter exchange with inorganic orthophosphate (Edwards and Walker, 1983
In the chloroplast, some of the photosynthate is directly converted to starch, which represents a transient storage, and is remobilized during the night to maintain leaf metabolism and Suc export to sink organs (Geiger and Servaites, 1994
Free hexoses are not direct end products of photosynthesis, but arise from Suc and starch degradation. Glc and Fru are produced by the action of invertases on Suc. There are several compartment-specific invertase isoforms (vacuolar, apoplastic, cytosolic) having different biological roles (for review, see Koch, 2004
Starch, which is transitorily stored in leaves, is degraded mainly during the night, thus providing C for Suc synthesis and for growth and maintenance. Starch degradation in cereal endosperm has been studied in great depth at biochemical and molecular levels (Ritchie et al., 2002
Starch synthesis and starch degradation need to be well regulated to make sure that the transient starch in leaf supplies enough energy and C skeletons for sink demand during the night. Plants defective in starch synthesis do not survive in short-day conditions, and in the same way mutants in the degradation of the transitory starch grow more slowly than wild type (Zeeman et al., 1998
Photosynthetic production of sugars and starch is regulated by the sink demand, which acts via sugars (Krapp and Stitt, 1994
Indeed, one major sink for C skeletons is the production of organic nitrogenous compounds, like amino acids, proteins, and many secondary compounds. The fixation and reduction of CO2 during photosynthesis and its reoxidation during respiration are crucial to provide both energy and C skeletons for the incorporation of inorganic N into amino acids by the N assimilation pathway. Vice versa, N availability and assimilation are required to sustain the use of C skeletons. In situations when N becomes limited, carbohydrates, starch, and soluble sugars accumulate in photosynthetic-active organs (Ono et al., 1996
Despite all the knowledge acquired on these central metabolic pathways in plants, genome sequencing revealed that we are far from understanding the structure and regulation of the basic metabolic pathways (Benning and Stitt, 2004
Here, we describe a QTL analysis for soluble sugar and starch content in the rosettes of Arabidopsis plants growing in short-day condition under two contrasting N environments, one that limits growth (N) and the other that is not limiting (N+). The Bay-0 x Shahdara recombinant inbred line (RIL) population studied here displayed large variations for all traits measured, and 39 QTLs corresponding to at least 14 distinct loci were detected. Taking advantage of the residual heterozygosity and the large size of this RIL population, we used a heterogeneous inbred family (HIF) strategy (Tuinstra et al., 1997
Statistical Analyses of the Variation Analyses of variance revealed a significant genotypic effect for each trait measured (P < 0.0001). A significant effect of the nitrate environment was also found for each trait (P < 0.0001). Cultivation repetitions also had significant effects on phenotypic variations for all traits (P < 0.0001) except ST3 and ST10, thus revealing the probable influence of uncontrolled environmental factors, although repetitions were performed in the same growth chamber. No significant effects of genotype x repetition interactions were found. All subsequent QTL analyses were performed on unadjusted mean values across the different repetitions, which should represent a good estimation of the average behavior of a genotype in a specific N environment. Distributions of the phenotypic values among RILs (Fig. 1 ) are relatively normal, with the population mean at or between the parental values. Frequency distributions (Fig. 1) of the traits measured show that transgressive individuals are found in the population for each trait, although Bay-0 and Shahdara phenotypes are very similar for most traits. Starch content, for instance, was very similar in Bay-0 and Shahdara both on 10 mM and 3 mM nitrate, but a large variability was nevertheless observed in the progeny. Frequency distributions of the traits measured are in accordance with a polygenic determinism, i.e. clearly quantitative. Broad-sense heritability (Table I ) was very high only for Fru content on 3 mM nitrate (82%), very low for Suc content on 10 mM nitrate (14%), and intermediate for the other traits (34%49%) measured.
The strongest correlations between the traits measured (Table II ) were found between Suc and Glc contents (0.86 and 0.92) and Suc and Fru contents (0.69 and 0.49) on both N+ and N, respectively. A stronger positive correlation was found in N+ between Glc and Fru (0.71) than in N (0.46). A rather high negative correlation on both N+ and N was found between total N content and starch content (0.65 and 0.73, respectively). Interestingly, a strong correlation was found between amino acid content and starch content in N (0.75), whereas it was not significant in N+.
QTL Analyses QTL mapping results are shown in Table III and Figure 2 . QTLs are named with the trait name suffixed with an ordering number starting with the first chromosome. A total of 39 independent QTLs distributed over all chromosomes and two QTL x QTL interactions were identified for the five traits measured on two contrasting nitrate environments (N+/N). QTL effects were rather weak, with contributions to phenotypic variation (R2) ranging from 3% to 40% and with only four QTLs with R2 higher than 10%. When considering QTL likelihood peak positions and direction of allelic effects, it appears that nine QTLs were identified in both limiting (N) and nonlimiting (N+) N environments, so we consider that 30 independent loci (and not 39) were actually identified. For each of these nine QTLs, significant QTL x N environment interaction effects were identified (P < 0.0001). Each trait measured is controlled by three to eight QTLs. Positive allelic effects on trait derive from Shahdara for 26 out of the 39 QTLs detected (negative "2a" value).
For starch content, four minor QTLs with R2 ranging from 4% to 8% were identified in N+ and five QTLs with R2 ranging from 3% to 14% in N. One starch QTL (ST10.3/ST3.3) was common to both nitrate conditions with similar effects, on the top of chromosome 3 (marker NGA172). Two QTL x QTL interactions with weak R2, both involving QTL ST3.4, were found significantly associated with starch variation in the RILs (Table III). Four minor QTLs for Glc contents were identified in N+ conditions with R2 ranging from 4% to 6%, and eight QTLs were identified in N conditions with effects ranging from 3% to 10%. Three QTLs (GL10.2/GL3.5, GL10.3/GL3.7, and GL10.4/GL3.8) were identified in both environments with similar effects, on chromosomes 4 (marker MSAT4-9) and 5 (MSAT5-19 and MSAT5-22). Four QTLs for Fru content were identified in N+ with R2 from 6% to 16% and six QTLs in N with R2 from 4% up to 40%. Four Fru QTLs (FR10.1/FR3.1, FR10.2/FR3.4, FR10.3/FR3.5, and FR10.4/FR3.6) were identified in both conditions. The major QTL FR10.2/FR3.4 on chromosome 4 displayed different R2 according to the N environment: 16% in N+ and 40% in N. In N, as much as 40.2 µmol/g dry matter (DM) of Fru content variation could be explained by this locus. Conversely, QTL FR10.4/FR3.6 on chromosome 5 had higher effects (12%) in N+ compared to N (5%). Only one QTL for Fru content shows positive 2a effects (in both environments). Three minor QTLs (R2 < 6%) for Suc content were identified in N+ and five QTLs in N with R2 from 3% to 10%. One Suc QTL (SU3.5/SU10.2) was common to both N conditions on chromosome 5.
Two QTLs were chosen for confirmation in NILs: FR3.4 and ST3.4. Our NIL strategy (HIF) relies on the existence of RILs still segregating for the region of interest. Five F6 RILs with a residual heterozygosity around FR3.4 position (i.e. MSAT4.15) were found, whereas two such RILs were found for ST3.4 with a residual heterozygosity around MSAT3.21 (Fig. 3 ). Each of the distinct candidate RILs for a QTL displays a different genetic background, which is useful when QTLs are involved in epistatic interactions with other loci. Four F7 plants derived from each candidate RIL and fixed for either the Bay-0 or the Shahdara allele at the region of interest were selfed to compare F8 phenotypes. As displayed on Figure 3, FR3.4 was confirmed in N conditions in four of the five HIFs tested (HIF156, HIF195, HIF209, and HIF415). These HIFs segregate around MSAT4-15, which is close to the estimated QTL position. Fru content was higher in the plants fixed for the Shahdara allele at MSAT4-15, which is consistent with the QTL analysis results (Table III). Conversely, Fru content was not significantly affected by the allele present at the region segregating in HIF11 (which does not include MSAT4-15). ST3.4 was confirmed in N conditions with HIF404 (starch content being higher in Bay-0 fixed plants) but not with HIF192, although both HIFs are segregating at MSAT3-21, which is close to the estimated QTL position.
Candidate Genes for Sugar-Related Traits When taking into account 10-cM intervals around the QTL positions, several colocalizations between some of the 118 C metabolism-related candidate genes and QTLs were found (Table IV ). Ten-centiMorgan intervals in Arabidopsis contain, on average, 450 genes, so such colocalizations cannot be interpreted without excessive speculation. Nevertheless, the colocalization of APL2 (large subunit of ADP-Glc pyrophosphorylase) with ST10.1 and the colocalization of a Suc transporter-like protein with SU3.5 are striking.
We focused our candidate gene approach more particularly on FR3.4 and ST3.4. By genotyping the HIFs heterozygous around FR3.4 with new markers (data not shown), the candidate region surrounding this QTL was narrowed to 1,080 kb. This region contains 268 genes, including several putative candidate genes coding for enzymes involved in C metabolism. None of the known fructokinases, Suc synthases, invertase, or invertase inhibitors is located near FR3.4. This interval contains a cytosolic -amylase (At4g15210), which is expressed in shoots at the vegetative stage and is inducible by sugar. The candidate region for ST3.4, if referring to HIF404, covers 10,175 kb. Although this region is still much too large to designate a candidate gene, it is nevertheless remarkable that a starch phosphatase (At3g46970) is encoded in this region. This region also contains a gene encoding Asn synthetase 1 (At3g47340), a major enzyme for amino acid synthesis.
The identification of new loci controlling quantitative traits related to metabolism should contribute to a better understanding of metabolic pathways and their regulation. QTL mapping in Arabidopsis has been only used a few times to study physiological traits (Mitchell-Olds and Pedersen, 1998
Thirty-nine C metabolism-related QTLs have been detected in total, which correspond to at least 14 distinct polymorphic loci, each representing one to six colocalizing QTLs. The genetic dissection revealed at least three QTLs for each trait and up to eight QTLs for Glc content in N-limiting conditions. This is coherent with previous QTL studies in Arabidopsis, detecting usually two to seven QTLs for a given trait (Alonso-Blanco et al., 1998
The variation observed for sugar-related traits in the Bay-0 x Shahdara progeny is wide (Fig. 1). All measured traits are strongly influenced by the level of nitrate provided to the plants (Fig. 1; Table I). In addition, many QTLs are specific to an N environment. Such an interaction of the QTLs for sugar-related traits with the N environment was expected, knowing the strong interrelation between C and N metabolisms in plants. Expression of C metabolism-related genes varies according to N status (Scheible et al., 1997 We propose that loci common to both N+ and N environments encode key enzymes or control elements for C metabolism, which are essential independently of the N status, whereas loci that are not stable across environments reflect adaptation of metabolism due to the constraint, encoding, for example, specific isoforms or regulatory factors. However, it is also possible that QTLs for sugar and starch are more difficult to detect in N+ condition due to lower carbohydrate levels in plant materials. Two out of four ST10 loci colocalize with a ST3 locus, and three out of four GL10 loci colocalize with a GL3 locus, which might indicate the general importance of these loci for starch and Glc accumulation. Interestingly, almost all QTLs for Suc are dependent on the environment, whereas, in contrast, all Fru QTLs detected in N+ also are detected in N. The major Fru QTL found in this study (FR3.4), accounting for 40% of the variation in Fru content in N, colocalizes with a Fru locus in N+ (FR10.2), which is only responsible for 16% of the variation. The importance of the FR10.2 effect (R2) is higher if compared to the genetic variation (estimated via the broad-sense heritability, h2): R2/h2 = 0.35 for FR10.2 (N+) versus 0.49 for FR3.4 (N). This might indicate a greater influence of environmental variations in N+, combined with a possibly reduced power in QTL detection. Nevertheless, this locus (FR3.4/FR10.2) is clearly interacting with the N environment (P < 0.0001). The underlying gene might be especially important in conditions when high levels of Fru accumulate due to the misbalance in the C and N supply in N, or the expression of this gene might be induced by N limitation.
In this study, QTLs for different soluble sugars are often found clustered (Fig. 2). Interestingly, inside all such clusters, the allelic effects are in the same direction, which strengthens the possibility that one gene accounts for all the colocalized QTLs. For one region in the middle of chromosome 5, six QTLs for all possible C-related traits were detected. If there is only one gene underlying these QTLs, it must be of most concern a step leading to general carbohydrate accumulation, but not starch accumulation. It is often found that Fru, Glc, and Suc levels rise (or fall) in parallel in leaves. An initial accumulation of Suc, one end product of photosynthesis, is followed by an increase in free hexose levels generated by the cleavage of Suc. At two positions, on chromosome 2 and at the south end of chromosome 5, GL10, FR10, and SU10 QTLs (N+) colocalize, but in N a QTL for Fru only is found. On the other hand, three times we observed either the combination of SU3 with GL3 or SU3 with FR3. Different metabolic pathways and specific regulations are certainly underlying these quantitative traits. Interestingly, the strongest QTL found in this study, FR3.4, is not accompanied by other sugar- or starch-content QTLs. It colocalizes with a FR10 locus, which might correspond to the same gene.
DM and N
Water and Anion Content
Flowering Time
Senescence All of the loci for yellowness (YP) and redness (RV) are located close to C QTLs found in this study. For example, YP3.2 and YP3.4 colocalize with inverse effect with ST3.2 and ST3.4. In the same manner, RV3.6 colocalizes with GL3.7, FR3.5, and SU3.5. Thus, the inverse relationship between carbohydrates and senescence-related traits found in our analysis rather points to the link between sugar starvation and the onset of senescence.
Candidate gene approaches have already been undertaken on starch or soluble sugar content in many crop species. For instance, Chen et al. (2001)
We focused our candidate gene approach more finely on FR3.4 and ST3.4. We looked at all the genes included in the genomic regions in which these QTLs were validated by exploiting HIFs. Fru release arises by the cleavage of Suc by invertase, but none of the known invertase or invertase inhibitors is located near FR3.4. Susy also produces Fru by Suc cleavage, yielding Fru and UDP-Glc, which can reenter metabolism without any further ATP cost, but none of the annotated Susy genes maps close to FR3.4. However, Susy is highly regulated (Koch, 2004
Many genes with putative regulatory functions, such as transcription factors and protein kinases, are located in the large confidence intervals delimiting the QTLs detected. Some of our QTLs likely represent new regulatory loci. In addition, we are aware that the restriction to major carbohydrate metabolism is rather limiting, and enzymes in pathways like photosynthesis, respiration, photorespiration, and many others would be possible candidate underlying QTLs for carbohydrate content. Research in recent years has hinted that the importance of the respiratory pathway in photosynthesis metabolism is greater than once imagined (Raghavendra and Padmasree, 2003
QTL confirmation and fine-mapping requires the construction of NILs that differ only at a small region around the QTL of interest (Glazier et al., 2002
This work dissects for the first time, to our knowledge, the genetic architecture behind carbohydrate accumulation in Arabidopsis grown in two contrasting N environments. Beside the discovery of one major locus for Fru accumulation, which responds to N constraints, many small- or medium-effect QTLs are observed. Interesting colocalizations with traits related to N metabolism, water status, flowering, root growth, and senescence add together to a global picture of the multiple roles of sugars in metabolism and signaling, during stress responses, as well as in development and plant growth. The cloning of the underlying genes will provide a basis to optimize plant growth efficiency and thereby plant yield.
Plant Material
The material used in this study was developed in our laboratory and has been deposited in public Arabidopsis (Arabidopsis thaliana) stock centers. The Bay-0 x Shahdara RIL population has been fully described previously (Loudet et al., 2002
NILs were developed as HIFs following the idea published by Tuinstra et al. (1997)
Plants were previously harvested 2 h after the beginning of day, freeze-dried, weighted (DM), and extracted with a two-step ethanol-water procedure (Loudet et al., 2003a
For the determination of Glc and Fru contents, 140 µL of water and 60 µL of NADP/ATP were added to 20 µL of each extract. A first measure of optical density (OD) at 340 nm was made after 10 min of agitation at 30°C. A second measure (OD2) was made after adding 0.3 units of hexokinase and 0.15 units of Glc-6-P dehydrogenase and a second series of agitation at 30°C. A last measure of OD (OD3) was made after adding 0.7 units of phosphoglucoisomerase per sample and a third series of agitation at 30°C. OD2-OD1 and OD3-OD2 are proportional to the Glc and Fru concentrations, respectively. For the determination of the Suc content, 100 µL of extract plus 10 µL of invertase were agitated for 20 min at 30°C. OD1 was measured after adding 60 µL of NADP-ATP buffer and agitation for 10 min at 30°C. OD2 was measured after adding 0.3 units of hexokinase and 0.15 units of Glc-6-P dehydrogenase and agitation for 10 min at 30°C. OD2-OD1 is proportional to the Suc content. For the calculation of the results (in µmol/g DM), a calibration curve with known Glc and Fru concentrations was built. For starch content determination, the residual DMs from ethanolic extractions were dried at 50°C, mixed with 1 mL of water per sample, and incubated at 100°C for 2 h. After adding
Data were collected from two (N) or three (N+) independent replications. The complete set of data was included in an ANOVA model to determine the specific effects of the "genotype" and "cultivation repetition" factors. This ANOVA enabled us to quantify the broad-sense heritability (genetic variance/total phenotypic variance). Subsequent analyses involved mean values over cultivation repetitions for each line. Phenotypic correlations were calculated for all combinations of traits in both nitrate conditions studied (Table II). Correlations between sugar-related traits measured in this study and N-related traits measured previously (Loudet et al., 2003b
The original set of markers (38 microsatellite markers) and the genetic map obtained with MAPMAKER 3.0, as described previously (Loudet et al., 2002 Additive effects of detected QTLs were estimated from CIM results; 2a represents the mean effect of the replacement of the Shahdara alleles by Bay-0 alleles at the studied locus (i.e. the difference between Bay-0 and Shahdara phenotypic effects associated with each allele at this locus). The contribution of each identified QTL to the total variance (R2) was estimated by variance component analysis. For each trait, the model involved the genotype at the closest marker to the corresponding detected QTLs as random factors in ANOVA. Only homozygous genotypes were included in the ANOVA analysis. Significant QTL x QTL interactions were also added to the linear model via the corresponding marker x marker interactions, and their contribution to the total variance also was estimated (Table II). QTL x N environment interaction was assessed by a two-factor ANOVA, with the corresponding marker genotype and N environment as classifying factors.
Potential candidate genes involved in sugar metabolism were searched in silico at two distinct QTLs: QTL FR3.4 and QTL ST3.4. Large genomic regions were taken into account to mine for putative positional candidates on the Web site of The Arabidopsis Information Resource (http://www.arabidopsis.org/). On the other hand, genomic positions of genes coding for key enzymes of the carbohydrate metabolism, chosen a priori for their function, were searched to look for potential colocalizations with the other QTLs detected at the genome level. A huge number of genes involved in C metabolism are known in Arabidopsis. We limited our analysis to 118 genes annotated as involved in major carbohydrate metabolism. We also included known regulatory genes recently described for their involvement in the regulation of C and N metabolisms, or their participation to sugar and N sensing, as well as to the regulation of the C to N ratio. Received April 20, 2006; returned for revision May 28, 2006; accepted May 30, 2006.
1 This work was supported by the European project NATURAL (grant no. QLRT200001097, 20012005 fellowship to V.S.-C.).
2 These authors contributed equally to the paper. The author responsible for distribution of materials integral to the findings presented in this article in accordance with the policy described in the Instructions for Authors (www.plantphysiol.org) is: Anne Krapp (krapp{at}versailles.inra.fr). Article, publication date, and citation information can be found at www.plantphysiol.org/cgi/doi/10.1104/pp.106.082396. * Corresponding author; e-mail krapp{at}versailles.inra.fr; fax 33130833096.
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